Recently, deep neural network (DNN)-based physical layer communication techniques have attracted considerable interest. Although their potential to enhance communication systems and superb performance have been validated by simulation experiments, little attention has been paid to the theoretical analysis. Specifically, most studies in the physical layer have tended to focus on the application of DNN models to wireless communication problems but not to theoretically understand how does a DNN work in a communication system. In this paper, we aim to quantitatively analyze why DNNs can achieve comparable performance in the physical layer comparing with traditional techniques, and also drive their cost in terms of computational complexity. To achieve this goal, we first analyze the encoding performance of a DNN-based transmitter and compare it to a traditional one. And then, we theoretically analyze the performance of DNN-based estimator and compare it with traditional estimators. Third, we investigate and validate how information is flown in a DNN-based communication system under the information theoretic concepts. Our analysis develops a concise way to open the "black box" of DNNs in physical layer communication, which can be applied to support the design of DNN-based intelligent communication techniques and help to provide explainable performance assessment.
翻译:最近,深神经网络(DNN)的物理层通信技术引起了相当大的兴趣。尽管模拟实验验证了DNN在加强通信系统和超功能方面的潜力,但很少注意理论分析。具体地说,在物理层的大多数研究倾向于将DNN模型应用于无线通信问题,但并不在理论上理解DNN在通信系统中是如何工作的。在本文件中,我们的目标是从数量上分析DNN在物理层与传统技术相比能够取得可比性能的原因,并推开其在计算复杂性方面的成本。为了实现这一目标,我们首先分析DNN发射机的编码性能,并将其与传统的编码性能进行比较。然后,我们从理论上分析DNNN的测算器的性能,并将其与传统的测算器进行比较。第三,我们根据信息理论概念调查和验证DNNN通信系统中的信息是如何飞动的。我们的分析发展了在物理层通信中打开DNNN的“黑盒”的简明方法,可以用于支持DNNN的智能通信技术的设计,帮助解释性能评估。